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Machine Learning with Python

Machine Learning with Python

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Learn Machine Learning with hands-on Python tutorials, real-world code examples, and clear explanations for researchers and developers. Admin: @HusseinSheikho || @Hussein_Sheikho

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๐Ÿ“ˆ Analytical overview of Telegram channel Machine Learning with Python

Channel Machine Learning with Python (@codeprogrammer) in the English language segment is an active participant. Currently, the community unites 67 838 subscribers, ranking 2 407 in the Education category and 5 078 in the India region.

๐Ÿ“Š Audience metrics and dynamics

Since its creation on ะฝะตะฒั–ะดะพะผะพ, the project has demonstrated rapid growth, gathering an audience of 67 838 subscribers.

According to the latest data from 04 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 75 over the last 30 days and by 11 over the last 24 hours, overall reach remains high.

  • Verification status: Not verified
  • Engagement rate (ER): The average audience engagement rate is 2.53%. Within the first 24 hours after publication, content typically collects 1.84% reactions from the total number of subscribers.
  • Post reach: On average, each post receives 1 717 views. Within the first day, a publication typically gains 1 249 views.
  • Reactions and interaction: The audience actively supports content: the average number of reactions per post is 6.
  • Thematic interests: Content is focused on key topics such as insidead, learning, degree, evaluation, algorithm.

๐Ÿ“ Description and content policy

The author describes the resource as a platform for expressing subjective opinions:
โ€œLearn Machine Learning with hands-on Python tutorials, real-world code examples, and clear explanations for researchers and developers. Admin: @HusseinSheikho || @Hussein_Sheikhoโ€

Thanks to the high frequency of updates (latest data received on 05 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.

67 838
Subscribers
+1124 hours
+587 days
+7530 days
Posts Archive
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Excited to share latest Deep Learning project: Faulty Solar Panel Detection using CNN + VGG19! ๐Ÿš€ โ˜€๏ธ Problem: Manual solar panel inspection is slow, costly, and error-prone due to environmental degradation. ๐Ÿ’ก Solution: An image classification model detecting 6 fault types via VGG19 Transfer Learning (ImageNet pretrained). ๐Ÿ“‚ Dataset: 885 images across 6 classes: โ€ข ๐Ÿฆ Bird-drop โ€ข โœ… Clean โ€ข ๐ŸŒซ Dusty โ€ข โšก๏ธ Electrical-damage โ€ข ๐Ÿ’ฅ Physical-Damage โ€ข โ„๏ธ Snow-Covered ๐Ÿ— Architecture: โ€ข Base: VGG19 (frozen for feature extraction) โ€ข Head: GlobalAveragePooling2D โ†’ Dropout(0.3) โ†’ Dense(90) โ€ข Training: Phase 1 (Head only, 46K params) โ†’ Phase 2 (Fine-tune top layers, lr=0.0001) ๐Ÿ“Š Results (2 epochs): โœ… Val Accuracy: 81.36% ๐Ÿ“‰ Val Loss: 0.589 ๐Ÿ” Takeaways: โ†’ Transfer learning works well on small datasets (~885 images). โ†’ Fine-tuning significantly boosted performance over feature extraction alone. โ†’ Model effectively distinguishes subtle differences (e.g., dusty vs. bird-drop). ๐Ÿ›  Stack: Python | TensorFlow/Keras | VGG19 | OpenCV | Scikit-learn | Seaborn | Matplotlib

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Top Machine Learning Algorithms You Should Actually Understand ๐Ÿค– Most individuals merely memorize algorithms. In contrast, professional engineers comprehend the appropriate application contexts and the underlying reasons for algorithmic failure. This is not a simple list; it is an explanation of how Machine Learning (ML) functions in practical environments. ๐Ÿ›  1๏ธโƒฃ โžค Linear Regression ๐Ÿ“ˆ This serves as the foundational starting point. The process involves fitting a straight line to data to address a fundamental question: how does the input affect the output? โ†ณ Example: Predicting house prices based on size. This method performs effectively when relationships are linear but fails when patterns become non-linear. 2๏ธโƒฃ โžค Logistic Regression ๐Ÿ“Š Despite its nomenclature, this algorithm is utilized for classification tasks. It predicts probabilities rather than continuous values. โ†ณ Example: Distinguishing between spam and non-spam emails. A thorough understanding of this method equips one with knowledge of decision boundaries. 3๏ธโƒฃ โžค Decision Trees ๐ŸŒณ Conceptualize this as a flowchart. Data is split based on specific conditions until a final decision is reached. โ†ณ Example: Loan approval systems. While easy to interpret, this approach is prone to overfitting. 4๏ธโƒฃ โžค Random Forest ๐ŸŒฒ This involves not a single tree, but hundreds of trees voting collectively. This ensemble approach significantly reduces overfitting. โ†ณ Example: Fraud detection systems. It serves as a very robust baseline in real-world systems. 5๏ธโƒฃ โžค K Nearest Neighbors (KNN) ๐Ÿ” There is no explicit training phase. The system simply compares new data points with the nearest existing data points. โ†ณ Example: Recommendation systems. While simple, it becomes computationally slow at scale. 6๏ธโƒฃ โžค K Means Clustering ๐ŸŽฏ This is a form of unsupervised learning. It groups similar data points into distinct clusters. โ†ณ Example: Customer segmentation. This method is effective only if the clusters are well-separated. 7๏ธโƒฃ โžค Support Vector Machine (SVM) โš–๏ธ This algorithm identifies the optimal boundary between different classes. It functions by maximizing the margin between classes. โ†ณ Example: Text classification. While powerful, it lacks scalability for very large datasets. 8๏ธโƒฃ โžค Naive Bayes ๐Ÿ“ง This method is based on probability theory. It operates under the assumption that features are independent. โ†ณ Example: Email filtering. It remains surprisingly effective for straightforward problems. 9๏ธโƒฃ โžค XGBoost ๐Ÿ† This algorithm is a consistent winner in competitions for a specific reason. It sequentially improves weak models to create a strong predictor. โ†ณ Example: Structured data problems. If uncertainty exists regarding which model to utilize, this is an excellent starting point. ๐Ÿ”Ÿ โžค Neural Networks ๐Ÿง  This constitutes the foundation of deep learning. It is capable of handling highly complex patterns. โ†ณ Example: Image, text, and speech processing. It requires substantial data, computational resources, and fine-tuning. How They Fit Together ๐Ÿงฉ Simple Data โ†’ Linear / Logistic Structured Data โ†’ Random Forest / XGBoost Similarity Based โ†’ KNN Unlabeled Data โ†’ K Means High Dimension โ†’ SVM Complex Patterns โ†’ Neural Networks Real Insight ๐Ÿ’ก Most real-world systems do not employ every available algorithm. They rely on: โ†’ Strong baselines โ†’ High-quality data โ†’ Proper evaluation They do not depend on overly complex models. TL;DR ๐Ÿ“ Start simple. Understand deeply. Then scale complexity. This is the methodology employed by professional Machine Learning engineers.

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30 Days with Python โ€” this is a step-by-step guide to learning the Python programming language over 30 days. Completing this
30 Days with Python โ€” this is a step-by-step guide to learning the Python programming language over 30 days. Completing this task may take more than 100 days, so proceed at your own pace. Repo: https://github.com/Asabeneh/30-Days-Of-Python https://t.me/CodeProgrammer ๐ŸŒŸ Please more Likes ๐Ÿ‘

๐Ÿ”ฅ Precision-Recall plot: Clearly explained ๐Ÿ” The precision-recall plot is a model-wide measure for evaluating classifiers.
๐Ÿ”ฅ Precision-Recall plot: Clearly explained ๐Ÿ” The precision-recall plot is a model-wide measure for evaluating classifiers. The plot is based on the evaluation metrics of Precision and Recall. ๐Ÿง Recall (identical to sensitivity) is a measure of the whole positive part of a dataset, whereas precision is a measure of positive predictions. The precision-recall plot uses precision on the y-axis and recall on the x-axis. You see a visual explanation in the figure. ๐Ÿค” It is easy to interpret a precision-recall plot. In general, precision decreases as recall increases. Conversely, as precision increases, recall decreases. ๐Ÿ’ก A random classifier lies on the y-axis (precision) at y = P/( P + N ) (P: number of positive labels, N: number of negative labels). A poor classifier lies below this line, and a good classifier lies well above this line. ๐ŸŒŸ You can see two different plots in the figure. On the left side, you see the random line is y=0.5. The ratio of positives (P) and negatives (N) is 1:1. On the right side, you see the random line is y=0.25. There, we have a ratio of positives and negatives of 1:3. ๐Ÿ“Š Another quality criterion in the precision-recall plot is the area under the curve (AUC) score, where the area under the curve is calculated. An AUC score close to 1 characterizes a good classifier. https://t.me/CodeProgrammer

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ROC Plot: Clearly explained ๐Ÿ”ฅ ๐Ÿ’ก You can use an ROC (Receiver Operating Characteristics) curve to evaluate the results of a
ROC Plot: Clearly explained ๐Ÿ”ฅ ๐Ÿ’ก You can use an ROC (Receiver Operating Characteristics) curve to evaluate the results of a classifier. The ROC curve represents the trade-off between the True positive rate (TPR) and the False positive rate (FPR). ๐Ÿค” Specificity and Sensitivity The True positive rate is also called sensitivity, and the True negative rate (TNR) is called specificity. Specificity is a measure for the whole negative part of a data set, while sensitivity is a measure for the whole positive part. ๐Ÿค– The ROC plot uses the True positive rate (TPR) on the y-axis, and the false positive rate (FPR) is on the x-axis (formula FPR = 1 - TNR). You see a visual explanation in the figure. ๐Ÿ˜Ž To interpret the ROC curve, note that a classifier with a random performance level is a straight line from the origin (0, 0) to the top right corner (1, 1). A poor classifier lies below this line, and a classifier improves as it deviates upward from the bisector. ๐Ÿ“Š Another criterion in the ROC curve is the area under the ROC curve (AUC) score. Here, we calculate the area under the curve. A good classifier has an AUC-Score > 0.5. Interested in AI Engineering?